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請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/102061
完整後設資料紀錄
DC 欄位值語言
dc.contributor.advisor楊宏志zh_TW
dc.contributor.advisorHung-Chih Yangen
dc.contributor.author林禹丞zh_TW
dc.contributor.authorYu-Cheng Linen
dc.date.accessioned2026-03-12T16:18:22Z-
dc.date.available2026-03-13-
dc.date.copyright2026-03-12-
dc.date.issued2026-
dc.date.submitted2026-02-02-
dc.identifier.citation1. Zheng, J., et al. (2025) "Hepatocellular carcinoma: signaling pathways and therapeutic advances." Signal Transduct Target Ther 10(1): 35.
2. Siegel, R. L., et al. (2024) "Cancer statistics, 2024." CA Cancer J Clin 74(1): 12–49.
3. Bray, F., et al. (2024) "Global cancer statistics 2022: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries." CA Cancer J Clin 74(3): 229–263.
4. Seyhan, D., et al. (2025) "Immune microenvironment in hepatocellular carcinoma: from pathogenesis to immunotherapy." Cell Mol Immunol 22(10): 1132–1158.
5. Singal, A. G., et al. (2023) "Global trends in hepatocellular carcinoma epidemiology: implications for screening, prevention and therapy." Nat Rev Clin Oncol 20(12): 864–884.
6. Yin, Y., et al. (2024) "Immunosuppressive tumor microenvironment in the progression, metastasis, and therapy of hepatocellular carcinoma: from bench to bedside." Exp Hematol Oncol 13(1): 72.
7. Llovet, J. M., et al. (2022) "Molecular pathogenesis and systemic therapies for hepatocellular carcinoma." Nat Cancer 3(4): 386–401.
8. Li, Y., et al. (2025) "Invasion and metastasis in cancer: molecular insights and therapeutic targets." Signal Transduct Target Ther 10(1): 57.
9. Felli, E., et al. (2025) "The role of liver sinusoidal endothelial cells in liver diseases: Key players in health and pathology." Journal of Hepatology.
10. Naba, A. (2024) "Mechanisms of assembly and remodelling of the extracellular matrix." Nat Rev Mol Cell Biol 25(11): 865–885.
11. Wang, Y. and G. J. Patti (2023) "The Warburg effect: a signature of mitochondrial overload." Trends Cell Biol 33(12): 1014–1020.
12. Gibert-Ramos, A., et al. (2025) "Sinusoidal communication in chronic liver disease." Clin Mol Hepatol 31(1): 32–55.
13. Craig, A. J., et al. (2020) "Tumour evolution in hepatocellular carcinoma." Nat Rev Gastroenterol Hepatol 17(3): 139–152.
14. Ghorani, E., et al. (2023) "Cancer cell-intrinsic mechanisms driving acquired immune tolerance." Immunity 56(10): 2270–2295.
15. Gracia-Sancho, J., et al. (2021) "Role of liver sinusoidal endothelial cells in liver diseases." Nat Rev Gastroenterol Hepatol 18(6): 411–431.
16. Roy, A. M., et al. (2023) "The extracellular matrix in hepatocellular carcinoma: Mechanisms and therapeutic vulnerability." Cell Rep Med 4(9): 101170.
17. Liu, Z. L., et al. (2023) "Angiogenic signaling pathways and anti-angiogenic therapy for cancer." Signal Transduct Target Ther 8(1): 198.
18. Luo, Z., et al. (2022) "Hypoxia signaling in human health and diseases: implications and prospects for therapeutics." Signal Transduct Target Ther 7(1): 218.
19. Sharma, A., et al. (2020) "Onco-fetal Reprogramming of Endothelial Cells Drives Immunosuppressive Macrophages in Hepatocellular Carcinoma." Cell 183(2): 377–394 e321.
20. Zhang, L., et al. (2025) "Extracellular matrix in vascular homeostasis and disease." Nat Rev Cardiol 22(5): 333–353.
21. Jiang, Y., et al. (2022) "Targeting extracellular matrix stiffness and mechanotransducers to improve cancer therapy." J Hematol Oncol 15(1): 34.
22. Suvac, A., et al. (2025) "Tumour hypoxia in driving genomic instability and tumour evolution." Nat Rev Cancer 25(3): 167–188.
23. Safri, F., et al. (2024) "Heterogeneity of hepatocellular carcinoma: from mechanisms to clinical implications." Cancer Gene Ther 31(8): 1105–1112.
24. Chastney, M. R., et al. (2025) "The role and regulation of integrins in cell migration and invasion." Nat Rev Mol Cell Biol 26(2): 147–167.
25. Llovet, J. M., et al. (2021) "Hepatocellular carcinoma." Nat Rev Dis Primers 7(1): 6.
26. Hanahan, D. (2022) "Hallmarks of Cancer: New Dimensions." Cancer Discov 12(1): 31–46.
27. Liu, Y., et al. (2024) "Understanding the complexity of p53 in a new era of tumor suppression." Cancer Cell 42(6): 946–967.
28. Wang, H., et al. (2023) "Targeting p53 pathways: mechanisms, structures, and advances in therapy." Signal Transduct Target Ther 8(1): 92.
29. Liu, J., et al. (2022) "Wnt/beta-catenin signalling: function, biological mechanisms, and therapeutic opportunities." Signal Transduct Target Ther 7(1): 3.
30. Glaviano, A., et al. (2023) "PI3K/AKT/mTOR signaling transduction pathway and targeted therapies in cancer." Mol Cancer 22(1): 138.
31. Bahar, M. E., et al. (2023) "Targeting the RAS/RAF/MAPK pathway for cancer therapy: from mechanism to clinical studies." Signal Transduct Target Ther 8(1): 455.
32. Crick, F. (1970) "Central dogma of molecular biology." Nature 227(5258): 561–563.
33. Li, X. and C. Y. Wang (2021) "From bulk, single-cell to spatial RNA sequencing." Int J Oral Sci 13(1): 36.
34. Nevi, L., et al. (2025) "Decoding the molecular and genomic landscape of hepatocellular carcinoma: biomarker discovery, classification frameworks, and therapeutic targeting." npj Gut and Liver 2(1).
35. Tzec‐Interián, J. A., et al. (2025) "Bioinformatics perspectives on transcriptomics: A comprehensive review of bulk and single‐cell RNA sequencing analyses." Quantitative Biology 13(2).
36. Okrah, K., et al. (2018) "Transcriptomic analysis of hepatocellular carcinoma reveals molecular features of disease progression and tumor immune biology." NPJ Precis Oncol 2: 25.
37. Ramachandran, P., et al. (2019) "Resolving the fibrotic niche of human liver cirrhosis at single-cell level." Nature 575(7783): 512–518.
38. Sangro, B., et al. (2020) "Association of inflammatory biomarkers with clinical outcomes in nivolumab-treated patients with advanced hepatocellular carcinoma." J Hepatol 73(6): 1460–1469.
39. Xue, R., et al. (2022) "Liver tumour immune microenvironment subtypes and neutrophil heterogeneity." Nature 612(7938): 141–147.
40. Greten, T. F., et al. (2023) "Biomarkers for immunotherapy of hepatocellular carcinoma." Nat Rev Clin Oncol 20(11): 780–798.
41. Ramirez, C. F. A., et al. (2024) "Cancer cell genetics shaping of the tumor microenvironment reveals myeloid cell-centric exploitable vulnerabilities in hepatocellular carcinoma." Nat Commun 15(1): 2581.
42. Aoki, T., et al. (2025) "Molecular classification of hepatocellular carcinoma based on zoned metabolic feature and oncogenic signaling pathway." Clin Mol Hepatol 31(3): 981–1002.
43. Zeng, Q., et al. (2023) "Understanding tumour endothelial cell heterogeneity and function from single-cell omics." Nat Rev Cancer 23(8): 544–564.
44. Yang, X., et al. (2024) "Precision treatment in advanced hepatocellular carcinoma." Cancer Cell 42(2): 180–197.
45. Choi, J. H. and S. N. Thung (2023) "Advances in Histological and Molecular Classification of Hepatocellular Carcinoma." Biomedicines 11(9).
46. Sia, D., et al. (2017) "Identification of an Immune-specific Class of Hepatocellular Carcinoma, Based on Molecular Features." Gastroenterology 153(3): 812–826.
47. Barcena-Varela, M., et al. (2025) "Precision models in hepatocellular carcinoma." Nat Rev Gastroenterol Hepatol 22(3): 191–205.
48. Zheng, H. C., et al. (2023) "An overview of mouse models of hepatocellular carcinoma." Infect Agent Cancer 18(1): 49.
49. Cigliano, A., et al. (2024) "Preclinical Models of Hepatocellular Carcinoma: Current Utility, Limitations, and Challenges." Biomedicines 12(7).
50. Yuen, V. W., et al. (2023) "Using mouse liver cancer models based on somatic genome editing to predict immune checkpoint inhibitor responses." J Hepatol 78(2): 376–389.
51. Suda, T. and D. Liu (2007) "Hydrodynamic gene delivery: its principles and applications." Mol Ther 15(12): 2063–2069.
52. Chou, H.-E. (2021) "Dissect the tumor microenvironment to improve adoptive T cell therapy in a newly developed highly quantitative HCC mouse model." Graduate Institute of Microbiology College of Medicine, National Taiwan University.
53. Schwinn, M. K., et al. (2020) "A Simple and Scalable Strategy for Analysis of Endogenous Protein Dynamics." Sci Rep 10(1): 8953.
54. Martin, M. (2011) "Cutadapt removes adapter sequences from high-throughput sequencing reads." EMBnet.journal 17(1).
55. Dobin, A., et al. (2013) "STAR: ultrafast universal RNA-seq aligner." Bioinformatics 29(1): 15–21.
56. Ritchie, M. E., et al. (2015) "limma powers differential expression analyses for RNA-sequencing and microarray studies." Nucleic Acids Res 43(7): e47.
57. Ihaka, R. and R. Gentleman (1996) "R: A Language for Data Analysis and Graphics." Journal of Computational and Graphical Statistics 5(3).
58. R Core Team (2025) 4.5.1 "R: A Language and Environment for Statistical Computing." R Foundation for Statistical Computing.
59. Posit team (2025) 2025.05.1+513 "RStudio: Integrated Development Environment for R." Posit Software, PBC.
60. Chen, Y., et al. (2025) "edgeR v4: powerful differential analysis of sequencing data with expanded functionality and improved support for small counts and larger datasets." Nucleic Acids Res 53(2).
61. Mudge, J. M., et al. (2025) "GENCODE 2025: reference gene annotation for human and mouse." Nucleic Acids Res 53(D1): D966–D975.
62. Ringner, M. (2008) "What is principal component analysis?" Nat Biotechnol 26(3): 303–304.
63. Schober, P., et al. (2018) "Correlation Coefficients: Appropriate Use and Interpretation." Anesth Analg 126(5): 1763–1768.
64. Koch, C. M., et al. (2018) "A Beginner's Guide to Analysis of RNA Sequencing Data." Am J Respir Cell Mol Biol 59(2): 145–157.
65. Law, C. W., et al. (2016) "RNA-seq analysis is easy as 1-2-3 with limma, Glimma and edgeR." F1000Res 5.
66. Kolde, R. (2025) 1.0.13 "pheatmap: Pretty Heatmaps."
67. Wickham, H. (2016) "ggplot2: Elegant Graphics for Data Analysis." Springer-Verlag New York.
68. Subramanian, A., et al. (2005) "Gene set enrichment analysis: a knowledge-based approach for interpreting genome-wide expression profiles." Proc Natl Acad Sci U S A 102(43): 15545–15550.
69. Li, C. L., et al. (2025) "HBV DNA integration and somatic mutations in HCC patients with HBV-HCV dual infection reveals profiles intermediate between HBV- and HCV-related HCC." J Biomed Sci 32(1): 2.
70. Liberzon, A., et al. (2015) "The Molecular Signatures Database (MSigDB) hallmark gene set collection." Cell Syst 1(6): 417–425.
71. Khatri, P., et al. (2012) "Ten years of pathway analysis: current approaches and outstanding challenges." PLoS Comput Biol 8(2): e1002375.
72. Young, M. D., et al. (2010) "Gene ontology analysis for RNA-seq: accounting for selection bias." Genome Biol 11(2): R14.
73. Robinson, M. D. and A. Oshlack (2010) "A scaling normalization method for differential expression analysis of RNA-seq data." Genome Biol 11(3): R25.
74. Hoshida, Y. (2010) "Nearest template prediction: a single-sample-based flexible class prediction with confidence assessment." PLoS One 5(11): e15543.
75. Thompson, J., et al. (2022) 1.0.6 "DGEobj.utils: Differential Gene Expression (DGE) Analysis Utility Toolkit."
76. Lee, J. S., et al. (2004) "Classification and prediction of survival in hepatocellular carcinoma by gene expression profiling." Hepatology 40(3): 667–676.
77. Boyault, S., et al. (2007) "Transcriptome classification of HCC is related to gene alterations and to new therapeutic targets." Hepatology 45(1): 42–52.
78. Chiang, D. Y., et al. (2008) "Focal gains of VEGFA and molecular classification of hepatocellular carcinoma." Cancer Res 68(16): 6779–6788.
79. Hoshida, Y., et al. (2009) "Integrative transcriptome analysis reveals common molecular subclasses of human hepatocellular carcinoma." Cancer Res 69(18): 7385–7392.
80. Castanza, A. S., et al. (2023) "Extending support for mouse data in the Molecular Signatures Database (MSigDB)." Nat Methods 20(11): 1619–1620.
81. Reich, M., et al. (2006) "GenePattern 2.0." Nat Genet 38(5): 500–501.
82. Benjamini, Y. and Y. Hochberg (1995) "Controlling the False Discovery Rate: A Practical and Powerful Approach to Multiple Testing." Journal of the Royal Statistical Society Series B: Statistical Methodology 57(1): 289–300.
83. Chandrashekar, D. S., et al. (2017) "UALCAN: A Portal for Facilitating Tumor Subgroup Gene Expression and Survival Analyses." Neoplasia 19(8): 649–658.
84. Chandrashekar, D. S., et al. (2022) "UALCAN: An update to the integrated cancer data analysis platform." Neoplasia 25: 18–27.
85. Cancer Genome Atlas Research, N., et al. (2013) "The Cancer Genome Atlas Pan-Cancer analysis project." Nat Genet 45(10): 1113–1120.
86. Bland, J. M. and D. G. Altman (2004) "The logrank test." BMJ 328(7447): 1073.
87. Lee, C., et al. (2025) "Vascular endothelial growth factor signaling in health and disease: from molecular mechanisms to therapeutic perspectives." Signal Transduct Target Ther 10(1): 170.
88. Yao, C., et al. (2023) "Angiogenesis in hepatocellular carcinoma: mechanisms and anti-angiogenic therapies." Cancer Biol Med 20(1): 25–43.
89. Yi, M., et al. (2024) "Targeting cytokine and chemokine signaling pathways for cancer therapy." Signal Transduct Target Ther 9(1): 176.
90. Torphy, R. J., et al. (2022) "Atypical chemokine receptors: emerging therapeutic targets in cancer." Trends Pharmacol Sci 43(12): 1085–1097.
91. Kureshi, C. T. and S. K. Dougan (2025) "Cytokines in cancer." Cancer Cell 43(1): 15–35.
92. Sun, Q., et al. (2023) "Immune checkpoint therapy for solid tumours: clinical dilemmas and future trends." Signal Transduct Target Ther 8(1): 320.
93. Pishesha, N., et al. (2022) "A guide to antigen processing and presentation." Nat Rev Immunol 22(12): 751–764.
94. Ayers, M., et al. (2017) "IFN-gamma-related mRNA profile predicts clinical response to PD-1 blockade." J Clin Invest 127(8): 2930–2940.
95. Danaher, P., et al. (2018) "Pan-cancer adaptive immune resistance as defined by the Tumor Inflammation Signature (TIS): results from The Cancer Genome Atlas (TCGA)." J Immunother Cancer 6(1): 63.
96. Verna, G., et al. (2025) "EGLN1 (PHD2) role in tumor microenvironment: insights for therapeutic targeting." Exp Mol Med.
97. Yang, K., et al. (2023) "Antigen presentation in cancer - mechanisms and clinical implications for immunotherapy." Nat Rev Clin Oncol 20(9): 604–623.
98. Long, X., et al. (2025) "Targeting tumour endothelial cells in liver cancer: The end of beginning." J Hepatol 82(4): 553–555.
99. Lu, Y., et al. (2025) "CXCL12(+) tumor-associated endothelial cells promote immune resistance in hepatocellular carcinoma." J Hepatol 82(4): 634–648.
100. Boehmer, D. and I. Zanoni (2025) "Interferons in health and disease." Cell 188(17): 4480–4504.
101. Moffitt, R. A., et al. (2015) "Virtual microdissection identifies distinct tumor- and stroma-specific subtypes of pancreatic ductal adenocarcinoma." Nat Genet 47(10): 1168–1178.
102. Montironi, C., et al. (2023) "Inflamed and non-inflamed classes of HCC: a revised immunogenomic classification." Gut 72(1): 129–140.
103. Taniai, T., et al. (2025) "Integrative transcriptome profiling elucidates molecular and immunovascular characteristics of macrotrabecular HCC." Hepatology.
104. Ajoolabady, A., et al. (2023) "Endoplasmic reticulum stress in liver diseases." Hepatology 77(2): 619–639.
105. Chen, W. T., et al. (2014) "GRP78 as a regulator of liver steatosis and cancer progression mediated by loss of the tumor suppressor PTEN." Oncogene 33(42): 4997–5005.
106. Youness, R. A., et al. (2025) "Macrophage migration inhibitory factor (MIF) and the tumor ecosystem: a tale of inflammation, immune escape, and tumor growth." Front Immunol 16: 1636839.
107. Kang, I. and R. Bucala (2019) "The immunobiology of MIF: function, genetics and prospects for precision medicine." Nat Rev Rheumatol 15(7): 427–437.
108. Wang, Y., et al. (2024) "The role of IGFBP-3 in tumor development and progression: enlightenment for diagnosis and treatment." Med Oncol 41(6): 141.
109. Wang, M., et al. (2025) "Lactate dehydrogenase A: a potential new target for tumor drug resistance intervention." J Transl Med 23(1): 713.
110. Marino, K. V., et al. (2023) "Targeting galectin-driven regulatory circuits in cancer and fibrosis." Nat Rev Drug Discov 22(4): 295–316.
111. Yang, R., et al. (2021) "Galectin-9 interacts with PD-1 and TIM-3 to regulate T cell death and is a target for cancer immunotherapy." Nat Commun 12(1): 832.
112. Han, X., et al. (2025) "The role of B2M in cancer immunotherapy resistance: function, resistance mechanism, and reversal strategies." Front Immunol 16: 1512509.
113. Lavie, D., et al. (2022) "Cancer-associated fibroblasts in the single-cell era." Nat Cancer 3(7): 793–807.
114. Li, Y., et al. (2024) "Role of ENO1 and its targeted therapy in tumors." J Transl Med 22(1): 1025.
115. Bian, X., et al. (2022) "Regulation of gene expression by glycolytic and gluconeogenic enzymes." Trends Cell Biol 32(9): 786–799.
116. Rosell-Garcia, T., et al. (2019) "A hierarchical network of hypoxia-inducible factor and SMAD proteins governs procollagen lysyl hydroxylase 2 induction by hypoxia and transforming growth factor beta1." J Biol Chem 294(39): 14308–14318.
117. Du, H., et al. (2017) "PLOD2 in cancer research." Biomed Pharmacother 90: 670–676.
118. Garlanda, C., et al. (2025) "IL-1 family cytokines in inflammation and immunity." Cell Mol Immunol 22(11): 1345–1362.
119. Liu, M., et al. (2024) "IL-1 signaling in aging and cancer: An inflammaging feedback loop unveiled." Cancer Cell 42(11): 1820–1822.
120. Middelburg, J., et al. (2023) "The MHC-E peptide ligands for checkpoint CD94/NKG2A are governed by inflammatory signals, whereas LILRB1/2 receptors are peptide indifferent." Cell Rep 42(12): 113516.
121. Goswami, A. B., et al. (2022) "Immunity-related GTPase IRGM at the intersection of autophagy, inflammation, and tumorigenesis." Inflamm Res 71(7-8): 785–795.
122. Ru, J., et al. (2024) "IRGM is a novel regulator of PD-L1 via promoting S6K1-mediated phosphorylation of YBX1 in hepatocellular carcinoma." Cancer Lett 581: 216495.
123. Wang, L., et al. (2024) "The multiple roles of interferon regulatory factor family in health and disease." Signal Transduct Target Ther 9(1): 282.
124. Chou, W. C., et al. (2023) "The NLR gene family: from discovery to present day." Nat Rev Immunol 23(10): 635–654.
125. Lin, X., et al. (2024) "Regulatory mechanisms of PD-1/PD-L1 in cancers." Mol Cancer 23(1): 108.
126. Kiss, Z., et al. (2020) "Non-circadian aspects of BHLHE40 cellular function in cancer." Genes Cancer 11(1-2): 1–19.
127. Ivanov, S. V., et al. (2007) "Hypoxic repression of STAT1 and its downstream genes by a pVHL/HIF-1 target DEC1/STRA13." Oncogene 26(6): 802–812.
128. Estephan, H., et al. (2025) "Hypoxia promotes tumor immune evasion by suppressing MHC-I expression and antigen presentation." EMBO J 44(3): 903–922.
129. Tsukada, K. and M. Suematsu (2012) "Visualization and analysis of blood flow and oxygen consumption in hepatic microcirculation: application to an acute hepatitis model." J Vis Exp(66): e3996.
130. Jungermann, K. and T. Kietzmann (2000) "Oxygen: modulator of metabolic zonation and disease of the liver." Hepatology 31(2): 255–260.
131. Kietzmann, T. (2019) "Liver Zonation in Health and Disease: Hypoxia and Hypoxia-Inducible Transcription Factors as Concert Masters." Int J Mol Sci 20(9).
132. Zhang, J., et al. (2022) "Endoplasmic reticulum stress-mediated cell death in liver injury." Cell Death Dis 13(12): 1051.
133. Park, S. and M. N. Hall (2025) "Metabolic reprogramming in hepatocellular carcinoma: mechanisms and therapeutic implications." Exp Mol Med 57(3): 515–523.
134. Chen, T. H., et al. (2025) "Mitochondrial alterations and signatures in hepatocellular carcinoma." Cancer Metastasis Rev 44(1): 34.
135. Luna-Marco, C., et al. (2023) "Endoplasmic Reticulum Stress and Metabolism in Hepatocellular Carcinoma." Am J Pathol 193(10): 1377–1388.
136. Schiliro, C. and B. L. Firestein (2021) "Mechanisms of Metabolic Reprogramming in Cancer Cells Supporting Enhanced Growth and Proliferation." Cells 10(5).
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/102061-
dc.description.abstract原發性肝癌一直是臨床上難以處理的疾病,不僅異質性高,惡性血管大量新生分布也是一大特點,導致復發率高、容易轉移,雖然已經有不少標靶藥物問世,但因為癌細胞本身致癌分子機制可能有差,加上影響的腫瘤微環境不盡相同,不同病人對單一種標靶藥物反應仍有限。隨著次世代定序技術的發展,轉錄體分析就變得重要,透過分析一群細胞內所有表現的RNA,能反映出當下該組織或生物體表達哪些基因,而推測受到甚麼樣的環境刺激,或是尋找感興趣的分子做為實驗目標。小鼠模型是在醫學研究中不可或缺的實驗材料,透過對基因方面和生理方面的操作觀察,更能模擬人體內真實情況。而先前我們實驗室就發展出了能模擬原發性肝癌的自發性小鼠模型,利用臨床上常見致癌突變基因:NRAS、PTEN、TP53,誘發小鼠肝臟細胞癌化。
因此,搭配轉錄體分析,我將針對該模型在腫瘤生長過程,分析腫瘤細胞和血管內皮細胞的基因表達,探討哪些腫瘤微環境的特徵在不同的癌化進程有什麼樣的變化。
透過RNA表達量的分析,我發現了肝臟細胞與血管內皮細胞在三組時期的血管生成訊號路徑、趨化因子、細胞外基質、主要組織相容性複合體、免疫檢查點、其它致癌基因、缺氧誘導因子、第二型干擾素相關的發炎特徵,這些腫瘤微環境有關基因的不同變化。腫瘤細胞於癌化早期會著重表達特定生長路徑,使得其它功能基因減少表達量,但進入晚期後則會開始表現大量基因,其中趨化因子Cxcl9與免疫檢查點配體PD-L1的表現上升,可能代表腫瘤內部有許多免疫細胞,但處於免疫耗竭的狀態。血管內皮細胞在正常組別與癌化早期組別基因表現相近,但到了晚期則會表達大量血管生成訊號路徑、細胞外基質、免疫檢查點相關基因、缺氧誘導因子,代表免疫抑制環境的形成、血管過度生長和大量纖維堆積。其中我再針對腫瘤形成有關的兩個特徵,缺氧與第二型干擾素反應,的相關基因進行分析,來探討兩種細胞在三個時間點的各別變化趨勢。我利用基因集富集分析(GSEA)中的相關基因集(gene set)和前沿子集(leading-edge subset),整理出腫瘤細胞的缺氧及趨勢都是先下降後上升;而血管內皮細胞的趨勢則是第二型干擾素反應會先上升後下降,對比缺氧反應是先下降後上升。而在這些趨勢中,我也整理出了不但相關而且顯著表現的一群關鍵基因,如Hspa5、Ldha和Cxcl9。最後,使用相似模板預測(Nearest template prediction),加上臨床上原發性肝癌的基因型分類,我預測出我們的小鼠模型和其中一類人類肝癌最相近,該類的特徵有預後差、細胞週期活躍、容易血管侵襲、免疫耗竭等。
透過轉錄體分析,我分析由特定基因突變的肝癌小鼠模型中,癌症環境特徵的基因變化,並找出高度相關的基因,而這些特徵變化和臨床上肝癌相關,未來可做為實驗目標,應用在更有效的療法開發。
zh_TW
dc.description.abstractHepatocellular carcinoma (HCC) is a deadly disease which has caused severe health issue worldwide, contributed by its heterogeneity of essence and aggressive vascular patterns. For high rate of recurrence and metastasis from HCC, there is an urgent need for more efficient treatment to clinically tackle this notorious foe, though numbers of targeted therapies still lack of expectation due to low responsiveness in other patients. As such, molecular mechanism of HCC is worthy of further investigation to develop more efficient treatment, since miracle of target therapies are based on gene or protein expressed in the tumor microenvironment (TME). Transcriptomic analysis is a powerful approach that determines what genes or physiological pathways may occur in a tissue under certain circumstances, and the information can be utilized to make a new hypothesis or target molecule to be further explored. Among multiple tools in transcriptomic analysis, RNA-sequencing (RNA-seq) is the most widely used in biomedical research. Disease animal models have convenience and authenticity, meaning they can simulate the clinical situation on human more realistically than cell lines do. Our lab has genetically developed a brand-new mouse HCC model which targeted on 3 oncogenic genes, namely NRAS, PTEN and TP53, to induce carcinogenesis of hepatic cells and formation of TME in mice spontaneously.
To meet the need of deciphering the complex HCC TME, I have analyzed the RNA-seq data from our HCC mouse model in different cell population related to TME across 3 different stages of HCC progression, aiming to find what genes, pathways or features our model may have for further HCC characterization and research.
Through analysis of RNA expression levels, I identified distinct temporal changes in TME–related genes in hepatocytes and vascular endothelial cells across three stages, including angiogenic signaling pathways, chemokines, extracellular matrix components, major histocompatibility complex molecules, immune checkpoints, other oncogenes, hypoxia-inducible factors, and type II interferon–tumor inflammatory signature. Tumor cells in the early stage of carcinogenesis preferentially expressed specific growth-related pathways, accompanied by reduced expression of genes involved in other cellular functions. In contrast, during the late stage, a broad range of genes became highly expressed. Notably, increased expression of the chemokine Cxcl9 and the immune checkpoint ligand PD-L1 suggested the presence of abundant yet exhausted immune cells in TME. Vascular endothelial cells exhibited similar gene expression profiles between the normal and early tumor stages. However, in the late stage, they showed upregulation of angiogenic signaling pathways, extracellular matrix components, immune checkpoint–related genes, and hypoxia-inducible factors, indicating the establishment of an immunosuppressive microenvironment, excessive vascular proliferation, and extensive fibrotic accumulation. Focusing on two key tumor-associated features, namely hypoxia and type II interferon responses, I further analyzed their related genes to investigate the dynamic changes in both cell types across the three stages. Using multiple related gene sets and leading-edge subsets from gene set enrichment analysis (GSEA), I found that hypoxia-related trend in tumor cells decreased initially and then increased in the advanced stages, as well as type II interferon responses did. In endothelial cells, type II interferon responses increased first and subsequently declined, whereas hypoxia responses showed an opposite pattern. From these trends, I identified a set of key genes that were both relevant and significantly expressed, including Hspa5, Ldha, and Cxcl9. Eventually, using nearest template prediction (NTP) coupled with clinical HCC molecular subtypes, I found that our mouse model most closely resembled a specific human HCC subtype characterized by poor prognosis, active cell cycle, high vascular invasion, and immune exhaustion.
Through transcriptomic analysis of a genetically defined HCC mouse model, this study reveals alterations of TME–associated gene and feature trends that are highly relevant to clinical HCC, providing potential experimental targets for developing more effective therapeutic strategies.
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dc.description.tableofcontents口試委員會審定書 i
謝辭 ii
中文摘要 iii
ABSTRACT v
目次 viii
圖次 xii
表次 xiv
Chapter 1 Introduction 1
1.1 Hepatocellular Carcinoma 1
1.2 Tumor microenvironment of HCC 2
1.2.1 Immunoediting and immunosuppressive TME 4
1.2.2 Stromal components in TME 6
1.2.2.1 Vasculature 6
1.2.2.2 Extracellular matrix 8
1.2.3 Metabolism in TME 10
1.2.4 Heterogeneity of TME 11
1.3 Molecular aspects of HCC 13
1.3.1 Genes 13
1.3.2 Signaling pathways 16
1.4 Transcriptomic analysis of HCC 17
1.4.1 Bulk RNA-seq 17
1.4.2 Molecular characterization of TME 18
1.5 HCC mouse models 21
Chapter 2 Specific aims 24
Chapter 3 Materials and methods 26
3.1 GEMM in our lab and primary cells isolation 26
3.2 cDNA library preparation and RNA sequencing 28
3.3 Raw data quality control, trimming, mapping and counting 28
3.4 Data normalization, transformation and filtering 28
3.5 Differential expression analysis 29
3.6 Functional pathway analysis 30
3.7 Nearest template prediction for human HCC subclass estimation 31
3.8 Clinical patients’ survival analysis of the refined hub genes of HCC features 32
Chapter 4 Results 34
4.1 Features of carcinogenesis enriched in differentially expressed genes among different stages of tumor cells 34
4.2 Features of carcinogenesis enriched in differentially expressed genes of vascular endothelial cells 38
4.3 Changes in response to hypoxia and interferon gamma in tumor cells and vascular endothelial cells during tumor progression 41
4.4 Hypoxia-associated gene expression is markedly enriched in tumor cells during tumor progression 43
4.5 Interferon gamma-associated genes are significantly enriched in tumor cells during tumor progression 45
4.6 Genes highly associated with hypoxia and interferon gamma response are enriched in vascular endothelial cells during tumor progression 47
4.7 The molecular subtype of human HCC most similar to our spontaneous HCC mouse model features poor prognosis, cell cycle dysregulation, and immune exhaustion 49
Chapter 5 Discussion 52
5.1 Summary 52
5.2 Limitation 58
5.3 Hypoxia & IFN-γ interaction and their effects for tumor immunity 61
5.4 Intriguing observation about hypoxia & IFN-γ response trends 62
5.5 Conclusion 65
Figures 66
Tables 115
Reference 118
Supplementary data 126
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dc.language.isoen-
dc.subject原發性肝癌-
dc.subject腫瘤微環境-
dc.subject自發性肝癌小鼠模型-
dc.subject轉錄體分析-
dc.subject缺氧環境-
dc.subject第二型干擾素-
dc.subjectHepatocellular carcinoma-
dc.subjectTumor microenvironment-
dc.subjectSpontaneous HCC mouse model-
dc.subjectTranscriptomic analysis-
dc.subjectRNA-seq-
dc.subjectHypoxia-
dc.subjectInterferon-γ-
dc.title自發性肝細胞癌小鼠模型產生腫瘤進展之轉錄體特徵分析zh_TW
dc.titleTo Investigate Tumor Progression by Transcriptomic Analysis of Spontaneous Hepatocellular Carcinoma Mouse Modelen
dc.typeThesis-
dc.date.schoolyear114-1-
dc.description.degree碩士-
dc.contributor.oralexamcommittee曾岱宗;游鎮瑋;許家郎zh_TW
dc.contributor.oralexamcommitteeTai-Chung Tseng;Chen-Wei Yu;Chia-Lang Hsuen
dc.subject.keyword原發性肝癌,腫瘤微環境自發性肝癌小鼠模型轉錄體分析缺氧環境第二型干擾素zh_TW
dc.subject.keywordHepatocellular carcinoma,Tumor microenvironmentSpontaneous HCC mouse modelTranscriptomic analysisRNA-seqHypoxiaInterferon-γen
dc.relation.page126-
dc.identifier.doi10.6342/NTU202600548-
dc.rights.note同意授權(限校園內公開)-
dc.date.accepted2026-02-02-
dc.contributor.author-college醫學院-
dc.contributor.author-dept微生物學研究所-
dc.date.embargo-lift2028-01-27-
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